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KODYM, O.; HRADIŠ, M.
Original Title
TG2: text-guided transformer GAN for restoring document readability and perceived quality
English Title
Type
WoS Article
Original Abstract
Most image enhancement methods focused on restoration of digitized textual documents are limited to cases where the text information is still preserved in the input image, which may often not be the case. In this work, we propose a novel generative document restoration method which allows conditioning the restoration on a guiding signal in form of target text transcription and which does not need paired high- and low-quality images for training. We introduce a neural network architecture with an implicit text-to-image alignment module.We demonstrate good results on inpainting, debinarization and deblurring tasks, and we show that the trained models can be used to manually alter text in document images.A user study shows that that human observers confuse the outputs of the proposed enhancement method with reference high-quality images in as many as 30% of cases.
English abstract
Keywords
Generative adversarial networks, Attention neural networks, Textual document restoration, Text inpainting
Key words in English
Authors
RIV year
2022
Released
22.09.2021
Publisher
Springer Verlag
Book
International Journal on Document Analysis and Recognition
ISBN
1433-2825
Periodical
Volume
2021
Number
1
State
Federal Republic of Germany
Pages from
Pages to
14
Pages count
URL
https://link.springer.com/article/10.1007/s10032-021-00387-z
BibTex
@article{BUT175769, author="Oldřich {Kodym} and Michal {Hradiš}", title="TG2: text-guided transformer GAN for restoring document readability and perceived quality", journal="International Journal on Document Analysis and Recognition", year="2021", volume="2021", number="1", pages="1--14", doi="10.1007/s10032-021-00387-z", issn="1433-2833", url="https://link.springer.com/article/10.1007/s10032-021-00387-z" }